大型传感器网络中移动Sink的数据采集算法

E. Saad, M. Awadalla, R. Darwish
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引用次数: 65

摘要

汇移动是传感器网络信息收集的最全面的趋势之一。这种信息采集方式对于平衡传感器网络间的能量消耗,剔除传感器网络的热点问题具有突出的作用。本文提出了一种针对大规模分层传感器网络中移动sink的精心规划的自适应移动策略。在时间驱动的场景中,移动接收器遍历整个网络,上传来自集群头的感知数据。移动接收器轨迹的规划使得所有头不需要多跳中继到达移动接收器。该系统旨在通过实现高水平的能源效率和所有网络头的能源消耗公平平衡来延长传感器网络的寿命。此外,还可以减少由于缓冲区溢出而导致的数据丢失。为了验证所提出的策略,进行了大量的仿真。所采用的数据采集方案在寿命延长和可扩展性方面优于静态sink方案和外围方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Data Gathering Algorithm for a Mobile Sink in Large-Scale Sensor Networks
Sink mobility is one of the most comprehensive trends for information gathering in sensor networks. This way of information gathering has a prominent role in balancing the energy consumption among sensor networks, and culling the hotspots problem of sensor networks. In this paper, a well planned adaptive moving strategy for a mobile sink in large-scale, hierarchical sensor networks is presented. The mobile sink traverses the entire network uploading the sensed data from cluster heads in time driven scenarios. The mobile sink trajectory is planned such that all heads require no multi-hop relays to reach the mobile sink. The proposed system aims at extending the lifetime of the sensor network by achieving a high level of energy efficiency and fair balancing of energy consumption across all network heads. Furthermore, reducing the loss that data incur due to buffer overflow. Extensive simulations are conducted in order to validate the proposed strategy. The adopted data gathering scheme outperforms the static sink scheme and periphery scheme in terms of life time elongation, and scalability.
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